Finance your purchase through HPEFS
- Click on 'Get Quote' to receive a quotation that includes financing provided by HPEFS.
Is your storage slowing down your HPC compute cluster?
The Cray ClusterStor E1000 Storage System is purpose-engineered to meet the demanding input/output requirements of supercomputers and HPC clusters in a very efficient way. The E1000 parallel storage solution typically achieves the given HPC storage performance requirements, significantly reducing the number of storage drives. That means HPC users with a fixed budget for the HPC system can spend more of their budget on CPU/GPU compute nodes, accelerating time-to-insight. The E1000 Storage System embeds the open-source parallel file system Lustre® to deliver this efficient performance. Hewlett Packard Enterprise provides enterprise-grade customer support in-house for Lustre that scales out (nearly) linearly, without software licensing for the file system per terabyte capacity or per storage drive. This allows customers to reap the benefits of the open-source movement while getting enterprise-grade support.
Are you looking for a custom, scalable HPC storage solution designed specifically for your needs? The Scalable Storage for Lustre solution offers a custom, modular Lustre configuration that can be tailored to specific workloads. Based on the HPE ProLiant DL360 Gen10 Server, HPE ProLiant DL380 Gen10 Server, HPE D3710 Enclosure, HPE MSA 2050 SAN Storage for metadata storage, and HPE D6020 Disk Enclosure for capacity storage, this solution provides flexibility in drive choices, tested configurations for reliability, and scalability through modularity. A Hewlett Packard Enterprise tested version of Community Lustre is provided, featuring the ZFS file system for data integrity, data compression, and file system snapshots. The Integrated Manager for Lustre provides simplified system management and tuning via a web interface, and a tight integration with the HPE Data Management Framework (DMF) provides native automated file management and streamlined data workflows.